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Tableau 2019.x Cookbook

You're reading from  Tableau 2019.x Cookbook

Product type Book
Published in Jan 2019
Publisher Packt
ISBN-13 9781789533385
Pages 670 pages
Edition 1st Edition
Languages
Authors (5):
Dmitry Anoshin Dmitry Anoshin
Profile icon Dmitry Anoshin
Teodora Matic Teodora Matic
Profile icon Teodora Matic
Slaven Bogdanovic Slaven Bogdanovic
Profile icon Slaven Bogdanovic
Tania Lincoln Tania Lincoln
Profile icon Tania Lincoln
Dmitrii Shirokov Dmitrii Shirokov
Profile icon Dmitrii Shirokov
View More author details
Toc

Table of Contents (18) Chapters close

Preface 1. Getting Started with Tableau Software 2. Data Manipulation 3. Tableau Extracts 4. Tableau Desktop Advanced Calculations 5. Tableau Desktop Advanced Filtering 6. Building Dashboards 7. Telling a Story with Tableau 8. Tableau Visualization 9. Tableau Advanced Visualization 10. Tableau for Big Data 11. Forecasting with Tableau 12. Advanced Analytics with Tableau 13. Deploy Tableau Server 14. Tableau Troubleshooting 15. Preparing Data for Analysis with Tableau Prep 16. ETL Best Practices for Tableau 17. Other Books You May Enjoy

Forecasting based on multiple regression

In the first recipe of this chapter, Basic forecasting and statistical inference, we learned how to perform forecasting with simple linear regression. In this recipe, we will learn how to perform forecasting based on multiple regression. Multiple regression is a type of forecasting procedure in which we use more than one variable to predict the outcome variable that we are interested in. In this recipe, our goal is to predict the level of cortisol at the highest effort during the physical exercise, based on cortisol level at rest and cortisol level at the beginning of the test. In the dataset that we are going to use, we have some respondents with missing data for cortisol level during physical exertion. Our aim is to use the result of our regression analysis to approximate cortisol level for those respondents and use these predicted values...

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